This paper proposes a new observer which computes the rotor speed of an induction motor by employing on-line a least-square algorithm implemented by an original neuron (TLS EXIN). It minimises the estimation error from the equation of the Luenberger observer considering the rotor flux-linkage estimation uncertainty. Experimental results show the goodness of this algorithm which outcomes the Matsuse observer in speed estimation accuracy at very low speed and zero-speed operation at no-load and at load. Moreover it has been verified both numerically and experimentally that this observer works properly even at very low speeds in regenerating mode without any instability.

An Adaptive Speed Observer based on a New Total Least-Squares Neuron for Induction Machine Drives

M Pucci;
2004

Abstract

This paper proposes a new observer which computes the rotor speed of an induction motor by employing on-line a least-square algorithm implemented by an original neuron (TLS EXIN). It minimises the estimation error from the equation of the Luenberger observer considering the rotor flux-linkage estimation uncertainty. Experimental results show the goodness of this algorithm which outcomes the Matsuse observer in speed estimation accuracy at very low speed and zero-speed operation at no-load and at load. Moreover it has been verified both numerically and experimentally that this observer works properly even at very low speeds in regenerating mode without any instability.
2004
Istituto di Studi sui Sistemi Intelligenti per l'Automazione - ISSIA - Sede Bari
0-7803-8486-5
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/201921
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